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TopRec: Domain-Specific Recommendation through Community Topic Mining in Social Network

机译:TopRec:通过社交网络中社区主题挖掘进行的特定领域推荐

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Traditionally, Collaborative Filtering assumes that similar users have similar responses to similar items. However, human activities exhibit heterogenous features across multiple domains such that users own similar tastes in one domain may behave quite differently in other domains. Moreover, highly sparse data presents crucial challenge in preference prediction. Intuitively, if users' interested domains are captured first, the recommender system is more likely to provide the enjoyed items while filter out those uninterested ones. Therefore, it is necessary to learn preference profiles from the correlated domains instead of the entire user-item matrix. In this paper, we propose a unified framework, TopRec, which detects topical communities to construct interpretable domains for domain-specific collaborative filtering. In order to mine communities as well as the corresponding topics, a semi-supervised probabilistic topic model is utilized by integrating user guidance with social network. Experimental results on real-world data from Epinions and Ciao demonstrate the effectiveness of the proposed framework.
机译:传统上,协作过滤假设相似的用户对相似的项目有相似的响应。但是,人类活动在多个领域中表现出不同的特征,因此用户在一个领域中拥有相似的品味可能在其他领域中表现出很大的不同。此外,高度稀疏的数据对偏好预测提出了至关重要的挑战。直观地,如果首先捕获了用户感兴趣的域,则推荐系统更有可能提供喜欢的项目,同时过滤掉那些不感兴趣的项目。因此,有必要从相关域而不是整个用户项目矩阵中学习偏好配置文件。在本文中,我们提出了一个统一的框架TopRec,该框架可以检测主题社区以构造可解释的域,以进行特定于域的协作过滤。为了挖掘社区以及相应的主题,通过将用户指导与社交网络集成,使用了半监督概率主题模型。来自Epinions和Ciao的真实世界数据的实验结果证明了所提出框架的有效性。

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